Design and Implementation of an Electronic Journal Resource Recommendation System Integrating User Profile and Knowledge Graph
DOI:
https://doi.org/10.54097/xk7e3m20Keywords:
Knowledge Graph, User Portrait, Personalized Recommendation, Electronic JournalsAbstract
In order to facilitate users to find the literature they need in a massive number of electronic journals, this article designs and implements a recommendation system based on the fusion of user profile and knowledge graph recommendation model. The system extracts feature from users downloaded electronic journal resources, and combines the knowledge graph of electronic journal resources to construct a recommendation model that effectively alleviates the problem of data sparsity and enhances the recommendation effect. System testing shows that the system has implemented the functions of each module and can provide personalized recommendations to users.
Downloads
References
[1] Liu Haiou, Sun Jingjing, Zhang Yaming, et al. Research on user portraits and information dissemination behaviors in online social activities. Information Science. 2018, Vol. 36 (No. 12) p. 17-21.
[2] Shao Bilin. Trend analysis of personalized recommendation research in Chinese libraries from the perspective of knowledge map. Library work and research.2021, (No. 02) , p. 88-98.
[3] Bai Zhongxian, Xia Ruyi, Zhao Lei, et al. The construction of smart library learning space from the perspective of meta-universe: principles, models, characteristics and challenges. Library theory and practice. 2023, (No. 03) , p. 86-93.
[4] Chen Anqi, Jin Kun, Tao Xinghua, et al. The architecture and optimization strategy of library intelligent resource recommendation system based on knowledge graph. Library. 2023, (No. 02) p. 21-25.
[5] Song Kunze, Wang Shuzhi, Li Bing, et al. Design and Implementation of Intelligent Recommendation Model for Science and Technology Innovation Resources Based on Knowledge Graph Application Chemistry, 2023, Vol. 40 (No.09) , p. 1330-1333.
[6] Guo Yuanbo, Liu Chunhui, Kong Jing, etc. Research on user behavior pattern portrait method in internal threat detection. Journal of Communications, 2018, Vol. 39 (No.12), p. 141-150.
[7] Longquan. Empirical Research on User Portrait Construction of University Library Entity Space. Library Science Research, 2021, (No.10) , p. 70-80.
[8] Mao Chenjie. Research on the intelligent library information recommendation system that integrates user portraits and knowledge maps. Henan Journal of Library Science, Vol. 2023,43 (No.08) , p. 115-119.
[9] Cheng Mengqing. Research on hybrid recommendation model based on user portrait and knowledge graph. Master, Jiangxi University of Finance and Economics, china, 2024.
Downloads
Published
Issue
Section
License
Copyright (c) 2024 Frontiers in Computing and Intelligent Systems
This work is licensed under a Creative Commons Attribution-NonCommercial 4.0 International License.